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Neuron
Perspective
Cortical Evolution: Judge the Brain by Its Cover
Daniel H. Geschwind1,* and Pasko Rakic2,*1Program in Neurogenetics, Department of Neurology, University of California, Los Angeles, Los Angeles, CA, 90095, USA2Deparment of Neurobiology and Kavli Institute, Yale University, New Haven CT, 06520, USA*Correspondence: [email protected] (D.H.G.), [email protected] (P.R.)http://dx.doi.org/10.1016/j.neuron.2013.10.045
To understand the emergence of human higher cognition, we must understand its biological substrate—thecerebral cortex, which considers itself the crowning achievement of evolution. Here, we describe how ad-vances in developmental neurobiology, coupled with those in genetics, including adaptive protein evolutionvia gene duplications and the emergence of novel regulatory elements, can provide insights into the evolu-tionary mechanisms culminating in the human cerebrum. Given that the massive expansion of the corticalsurface and elaboration of its connections in humans originates from developmental events, understandingthe genetic regulation of cell number, neuronal migration to proper layers, columns, and regions, and ulti-mately their differentiation into specific phenotypes, is critical. The pre- and postnatal environment alsointeracts with the cellular substrate to yield a basic network that is refined via selection and elimination ofsynaptic connections, a process that is prolonged in humans. This knowledge provides essential insightinto the pathogenesis of human-specific neuropsychiatric disorders.
IntroductionSince the time of Darwin’s The Origin of Species about 200 years
ago, there has been little disagreement among scientists that the
brain, and more specifically its covering, cerebral cortex, is the
organ that enables human extraordinary cognitive capacity that
includes abstract thinking, language, and other higher cognitive
functions. Thus, it is surprising that relatively little attention has
been given to the study of how the human brain has evolved
and become different from other mammals or even other pri-
mates (Clowry et al., 2010). Yet, the study of human brain evolu-
tion is essential for understanding causes and to possibly
develop cures for diseases in which some of the purely human
behaviors may be disrupted, as in dyslexia, intellectual disability
(ID), attention deficit hyperactivity disorder (ADHD), autism spec-
trum disorder (ASD), and schizophrenia, as well as a number of
human-specific neurodegenerative conditions including Alz-
heimer’s disease (e.g., Casanova and Tillquist, 2008; Geschwind
and Konopka, 2009; Knowles and McLysaght, 2009; Li et al.,
2010; Miller et al., 2010; Preuss et al., 2004; Xu et al., 2010).
Traditionally, it is comparative anatomy that has informed our
understanding of how our brain may have evolved over 300
million years of mammalian evolution (Kaas, 2013; Preuss,
1995). These studies left no doubt that the human cerebral cor-
tex has expanded significantly relative to other hominids,
including introduction of new regions in the frontal and parieto-
temporal lobes in humans (Dunbar, 1993; Fjell et al., 2013; Pre-
uss, 1995; Rakic, 2009; Teffer and Semendeferi, 2012). It also
became evident that although the basic principles of brain devel-
opment in all mammals may be conserved, the modifications of
developmental events during evolution produce not only quanti-
tative but qualitative changes as well (Table 1).
Due to the limits of the space, we cannot provide a compre-
hensive review of this wide-ranging topic. Instead, we will focus
on the expansion and elaboration of the human cerebral
neocortex and provide our own personal perspective on some
of the key advances in this area, including the high promise, as
well as enormous challenges ahead. We organize our thoughts
into twomajor areas—the phenotype-driven and genome-driven
approaches, which, unfortunately, only rarely meet in themiddle.
Our hope is that in the near future, it will be possible to connect
some of the known human genetic adaptations to the develop-
mental and maturational features that underlie uniquely human
cognitive abilities.
The Phenotype-Based ApproachCortical Expansion
It is well established that the expansion of the cortex occurs pri-
marily in surface area rather than in thickness. This is most pro-
nounced in anthropoid primates, including humans, in which the
neocortex comprises up to 80% of the brain mass. We have also
known for a long time that the neocortex is subdivided into
distinct cytoarchitectonic areas with neurons organized in hori-
zontal layers or laminae, and vertical (radial) columns or mod-
ules, which have increased in number, size, and complexity
during cortical evolution (Mountcastle, 1995; Goldman-Rakic,
1987). Of course, brain size is not simply a matter of cell number;
it also reflects cell density arrangements and connectivity (Her-
culano-Houzel et al., 2008), which is relevant here, as the
distance between cell bodies in the cerebral cortex, especially
prefrontal regions of humans, is greater than in other primates
(Semendeferi et al., 2011). Thus, three essential features account
for the changes in cerebral size over mammalian evolution: large
changes in cell number, morphology, and composition.
However, it is not sufficient to enlarge the entire brain, as Ne-
anderthals had large brains, and modern human brain size may
differ by 2-fold among individuals. From this perspective, many
genes that modify cell cycle can increase or decrease brain
size but not necessarily in a manner that is relevant to cerebral
evolution. A salient recent example worth discussing is the so-
phisticated analysis of the function of BAF-170 in mouse brain
development (Tuoc et al., 2013). This study shows that BAF-
170 controls cortical neurogenesis via modulating the
Neuron 80, October 30, 2013 ª2013 Elsevier Inc. 633
Table 1. Differences between Developing Human and Mouse Neocortex
*The quantitative statements above are only an approximation of the level of an order of magnitude to highlight how large the differences are. The in-
clusion of all the references and precise numbers and measurements that may differ due to the individual variations within species as well as the
methods used are not practical or appropriate in this short Perspective article.
Neuron
Perspective
intermediate progenitor pool and therefore suggests that this
could be related to enhanced intellectual capacities of primates
via cortical enlargement. However, we posit that the overall
expansion of the entire volume of the cortex, including its width,
as well as potentially other brain regions, suggests that this
particular gene is actually unlikely to be involved in the specific
and selective expansion of cortical surface area occurring in pri-
mate and human brain evolution.
The cellular mechanism for the enormous cortical expansion in
the surface area without a comparable increase in thickness has
been first explained by the radial unit hypothesis (RUH) (Rakic,
1988). According to the RUH, tangential (horizontal) coordinates
of cortical neurons are determined by the relative position of their
precursor cells in the proliferative zone lining the cerebral ventri-
cles, while their radial (vertical) position is determined by the time
of their origin. Thus, the number of the radial ontogenetic col-
umns determines the size of the cortical surface, whereas the
number of cells within the columns determines the thickness.
This model frames the issue of the evolution of cerebral cortical
size and its thickness in the context of understanding the mech-
anisms governing genetic regulation of cell number and their
allocation to different regions (Casanova and Tillquist, 2008;
Elsen et al., 2013; Hevner and Haydar, 2012; Molnar, 2011).
Furthermore, according to the RUH, the initial increase in the
number of neural stem cells occurs by symmetrical divisions in
the ventricular zone (VZ) before the onset of neurogenesis and
the formation of the subventricular zone (SVZ) (Bystron et al.,
2008; Rakic, 1988, 2009; Stancik et al., 2010). This highlights
genes involved in the control of the duration and mode of cell di-
634 Neuron 80, October 30, 2013 ª2013 Elsevier Inc.
vision (symmetric/asymmetric) as important factors for cerebral
expansion in evolution (Huttner and Kosodo, 2005; Rakic,
2009). Finally, the manner by which a larger number of postmi-
totic cells migrate radially from the proliferative VZ/SVZ to
become deployed in the cortical plate as a relatively thin sheet
is a biological necessity that enables cortical expansion during
evolution (Heng et al., 2008; Noctor et al., 2001; Rakic, 1988,
1995; Takahashi et al., 1999; Yu et al., 2009). More recently, elec-
troporation and transgenic technologies show intermixing of the
ontogenetic columns in the SVA that is necessary for the forma-
tion of functional columns with different compositions and con-
stellations of cell types (Figure 1A; Torii et al., 2009). However,
the relation of ontogenetic columns to functional columns of
the adult cortex remains to be defined (e.g., Mountcastle, 1995).
Since the length of the cell cycle is a major determinant of the
number of cells produced, it is paradoxical that the duration of
the cell cycle in primates is about five times longer than that in
mouse (Kornack and Rakic, 1998; Lukaszewicz et al., 2006).
Nevertheless, due to the greatly extended duration of cortical
neurogenesis in primates (�100 days in human, 60 days in ma-
caque monkeys—compared to 6 days in mice), the number of
successive cell-division cycles that generate cortical cells can
account for the enormous expansion of cortical surface (Cavi-
ness et al., 2003; Rakic, 1995). In contrast, the hypercellularity
of upper layers can be attributed to the enlargement of the
SVZ in human (Bystron et al., 2008). Its outer portion, termed
OSVZ, has massively expanded in human and nonhuman pri-
mates, which is likely important for human brain evolution (Ken-
nedy and Dehay, 2012; LaMonica et al., 2012). Furthermore, the
Figure 1. Radial Unit Model of theDeployment of Postmitotic MigratoryNeurons and Their Settling Pattern into theHorizontal-Laminar, Inside-Out, andVertical-Columnar Organization(A) Neuronal progenitors in the proliferative ven-tricular and subventricular zones (VZ/SVZ/OSZ)and their progenies exhibit clonal heterogeneity(indicated by the differently colored ellipses).Several clones become intermixed in the SVZ,before migrating across the intermediate zone (IZ)along elongated shafts of the radial glial cells(RGC) into the cortical plate (CP). Newborn neu-rons bypass previously generated cells of thedeeper layers (yellow stripe) in the inside-outsequence (layers 6 to 2) to participate in pheno-typically and functionally heterogeneous mini-columns (MC) consisting of several ontogeneticradial columns (ORC) (e.g., Rakic, 1988; Torii et al.,2009).(B) Graphic explanation of the Radial UnitHypothesis of cortical expansion, by either pre-venting programmed cell death or increasing therate of proliferation in mice, can produce a largernumber of radial units that, constrained by theradial glial scaffolding, generate an expandedcellular sheet, which begins to buckle and trans-forms a lissencephalic (on the left) to the gyr-encephalic (on the right) cerebrum. Based onstudies in primates and experiments in mice (e.g.,Kuida et al., 1998; Rakic, 2009; Haydar et al., 2003;Chenn and Walsh, 2003).(C) Illustration of the concept, how opposingrostro-caudal (R-CG) and caudo-rostral (C-RG)
molecular gradients, that form the protomap in embryonic VZ/SVZ lining cerebral ventricle (CV) can introduce new subtypes of neurons that migrate to theoverlying CP and establish new cortical areas in the superjacent CP, indicated by yellow and orange color stripes. Based on experimental data inmice (e.g., Groveand Fukuchi-Shimogori, 2003; O’Leary and Borngasser, 2006; Cholfin and Rubenstein, 2008).
Neuron
Perspective
4-fold increase in the width of layer IV in primates, but not ro-
dents, is in part a result of an increased production of cells
destined for these areas in the VZ/SVZ subjacent to area 17
compared to 18 at the time of genesis of the upper layers (Kor-
nack and Rakic, 1998; Lukaszewicz et al., 2006; Polleux et al.,
1997). Thus, an explanation of genetic regulation of the length
of progenitor cell divisions in the VZ/SVZ may provide clues to
how these changes may have occurred during evolution (Ken-
nedy and Dehay, 1993; Rakic, 1995; Tarui et al., 2005; Xuan
et al., 1995). Finally, delay in the switch between symmetric
and asymmetric divisions in the VZ/SVZ could indirectly cause
the enlarged cortical surface of the cerebral cortex (Rakic,
1995). Indeed, the decrease of programmed cell death (Haydar
et al., 2003; Kuida et al., 1998), or increase in number of cell
cycles (Chenn and Walsh, 2002, 2003), can expand the mouse
neocortical surface without an increase in its width, consistent
with what may have occurred during mammalian brain evolution
(Figure 1B). The elimination of the isochronously dividing cells by
low doses of ionizing radiation in monkey embryos at early
stages of development results in a decrease in cortical surface
with little effect on its thickness, whereas later irradiation deletes
individual layers and reduces cortical thickness without overall
decrease in surface (Selemon et al., 2013).
The mitotic activity in the VZ can be divided into the stage
before and after onset of neurogenesis that is followed by
neuronal migration (Rakic, 1988). The duration of the first phase,
and of the cell cycle, determines the number of radial units and,
indirectly, the size of cortical areas, while duration of the second
phase determines the number of neurons within each ontoge-
netic column. It is also during this second phase that the time
of neuron origin determines laminar phenotype of generated
neurons (Caviness and Rakic, 1978; McConnell, 1995; Rakic,
1974). More recent studies indicate that the switch between
the two phases of cortical development may be triggered
by the activation of numerous putative regulatory genes that
control the mode of mitotic division and cell polarity in the
VZ/SVZ including Notch, Numb, Cadherin, and AMP-activated
protein kinase (e.g., Amato et al., 2011; Kwan et al., 2008; Liu
et al., 2008, 2012b; Rash et al., 2013; Rasin et al., 2007; Solecki
et al., 2006). Several lines of evidence from experimental manip-
ulation as well as the pathogenesis of particular cortical malfor-
mations in humans suggest that these two phases can be
separately affected: a deficit occurring during the first phase pro-
duces a cortex with a small surface area but normal or enlarged
thickness (lissencephaly), whereas a defect during the phase of
ontogenetic column formation produces polymicrogyria with
thinner cortex and relatively normal or larger surface (e.g., Reiner
et al., 1993). Although the developmental mechanisms underly-
ing the natural occurrence and patterning of cortical gyri in other
species remain largely unknown, several theories have been pro-
posed (e.g., Van Essen, 1997).
The relevance of the process of progenitor proliferation to hu-
man brain evolution is also supported by evidence of positive se-
lection of genes involved in regulating brain size via cell-cycle
control in humans, notably ASPM and MCPH1, in which muta-
tions cause intellectual disability in humans (Bond et al., 2002;
Neuron 80, October 30, 2013 ª2013 Elsevier Inc. 635
A B
C D
Figure 2. Gene Coexpression Modules and Hub Genes in theDeveloping Human and Macaque Monkey Cerebral Cortex(A and B) The average scaled expression of all genes in two coexpressionmodules with gradient-like patterns. (A) Genes in M91 exhibit a pattern withgraded expression along the anterior-posterior axis. (B) Genes in M13 show agradient in the neocortical areas of the temporal lobe.(C and D) Radar charts with qRT-PCR data of hub genes in modules 91 and 13.(C) Areal expression of CLMP (hub gene of M91) demonstrates a cleargradient-like expression pattern in humans (blue), with a graded expressionfrom the frontal lobe to the occipital lobe. This gradient-like expression is notpresent in themacaquemonkey (red). (D) Areal expression ofNR2F2 (hub geneof M13) exhibits a gradient-like expression pattern that is conserved betweenthe human (blue) and macaque monkey (red) temporal cortices. Based onPletikos et al. (2013).
Neuron
Perspective
Evans et al., 2004; Jackson et al., 2002; Kouprina et al., 2004;
Zhang, 2003). Thus, although the RUH provides a framework
for understanding of cortical expansion during evolution, this
process requires activity of many genes. Given the high level of
amino acid conservation of many of the key neurodevelopmental
proteins across mammalian evolution, introduction of small
modifications in the timing of developmental events via the
adaptive evolution of new regulatory elements, as has occurred
in limb evolution, is also likely to play a role (Cotney et al., 2013;
Prabhakar et al., 2008).
Introduction of New Areas and Cells
In addition to dramatically expanding surface area, the
neocortex also divided into more complex and more distinct cy-
toarchitectonic maps by both the differential growth of existing,
as well as the introduction of novel, areas (e.g., (Krubitzer and
Kaas, 2005; Preuss, 2000). The final pattern and relative size of
cytoarchitectonic subdivisions of the neocortex are probably
regulated by a different set of genes than those regulating
neuronal number and, in addition, must be coordinated through
reciprocal cell-cell interactions with various afferent systems.
The protomap hypothesis (PMH) of cortical parcellation
(Rakic, 1988) postulates that intersecting gradients of molecules
636 Neuron 80, October 30, 2013 ª2013 Elsevier Inc.
might be expressed across the embryonic cerebral wall that
guides and attracts specific afferent systems to appropriate po-
sition in the cortex, where they can interact with a responsive set
of cells. The prefix ‘‘proto’’ indicates the malleable character of
this primordial map, as opposed to the concept of equipotential
cortical plate consisting of the undifferentiated cells that is even-
tually shaped and subdivided entirely by the instructions from
those afferents (Creutzfeldt, 1977). There has been increasing
evidence of differential gene expression across the embryonic
cerebral wall that indicates prospective subdivisions of the
neocortex. Some of these molecules may be expressed as
opposing gradients or in a region-specific manner before and/
or independently, since dilation of input does not prevent forma-
tion of at least some basic region-specific cytoarchitectonic fea-
tures (Figure 1C; Arimatsu et al., 1992; Cohen-Tannoudji et al.,
1994; Grove and Fukuchi-Shimogori, 2003; Miyashita-Lin et al.,
1999; O’Leary and Borngasser, 2006; Rakic et al., 1991; Ruben-
stein and Rakic, 1999). An instructive example of how new re-
gions could emerge via differential expansion of the cortical
surface is the demonstration that frontal cortex can be enlarged
in surface area without change in the size of other areas via
manipulation of the transcription factors Fgf8, Fgh17, and
Emx2 (Cholfin and Rubenstein, 2008). Opposing molecular gra-
dients during development can, at some points of their intersec-
tion, provide instructions and coordinates for the creation of the
new neocortical areas (Figure 1C). For example, prospective
Broca and Wernicke areas, which are formed as islands in the
frontal and temporal lobes display a distinct temporarily enriched
gene expression pattern that is distinct from the mice or ma-
caque cerebrum at the comparable prenatal stages (e.g. Abra-
hams et al., 2007; Johnson et al., 2009; Pletikos et al., 2013;
Figure 2).
The complex process of radial glia-guided neuronal migration
of projection neurons was probably introduced during evolution
to enable translation of the protomap at the VZ to the overlying
cerebral cortex and preservation of neuronal positional informa-
tion (Rakic, 1988). The cellular and molecular mechanisms
underlying this complex event involve cooperation of multiple
genes and molecules including astrotactin, doublecortin,
glial growth factor, erbB, Reelin, Notch, NJPA1, Integrins,
Sparc-like1, Ephs,MEKK4, various calcium channels, receptors,
and many others (e.g., Anton et al., 1999; Gleeson and Walsh,
2000; Hatten, 2002; Gongidi et al., 2004; Hashimoto-Torii
et al., 2008; Hatten, 2002; Komuro and Rakic, 1998; Nadarajah
and Parnavelas, 2002; Reiner et al., 1993; Sarkisian et al.,
2006; Torii et al., 2009). Radial migration is particularly elaborate
in the convoluted primate cerebrum, requiring modification of
the radial glia (Rakic, 2003). This process is extremely relevant
to human cerebral function, as neuronal migrational abnormal-
ities are amajor cause of human neurodevelopmental conditions
(Gleeson and Walsh, 2000; Lewis and Levitt, 2002). Yet muta-
tions that cause severe abnormalities in human brain may cause
far more subtle phenotypes in mouse, consistent with the exi-
gencies of much longer migration in humans (e.g., Gleeson
and Walsh, 2000; Lewis and Levitt, 2002).
There are also several examples of new types of neurons in the
human cerebrum, including von Economo neurons, which are
also observed in the brains of other large mammals and yet still
Neuron
Perspective
may play an important role in human cerebral cortex (Butti et al.,
2013). The more elaborate dendritic trees in humans, greatest in
prefrontal cortex, coupled with overall larger neuropil and more
spacing between pyramidal neurons in human (Bianchi et al.,
2013a; Teffer et al., 2013) suggests differences in local circuit or-
ganization. Relevant to this notion is that one characteristic of
human cerebral cortex is the high number and variety of local cir-
cuits neurons, most of which are inhibitory GABAergic interneu-
rons (e.g., DeFelipe et al., 2002). One recent finding is that, unlike
in the rodent, where GABA interneurons are generated in the
ganglionic eminence (GE) of the ventral telencephalon (e.g., An-
derson et al., 2001; de Carlos et al., 1996), a subclass of these
cells in the human embryos are generated in the VZ/SVZ of the
dorsal telencephalon (e.g., Jakovcevski et al., 2011; Letinic
et al., 2002; Petanjek et al., 2009). Genes involved in the develop-
ment of the GABAergic cells, including Nkx2.1, that are present
in the mouse GE are present in both GE as well as dorsal VZ/SVZ
in human embryos (Allan Brain Institute). A deeper discussion of
all of the human-specific quantitative and qualitative differences,
including cell types and morphology, are beyond the scope of
this chapter, but some key phenotypic differences are high-
lighted in Table 1. Clearly more phenotype discovery is needed
(Preuss, 2012).
Effect of the Environment, Neoteny, and Heterochrony
The increase of cortical surface during evolution by the introduc-
tion of new radial units, as well as the expansion and elaboration
of the cytoarchitectonic areas, provide an opportunity for evolu-
tion to create novel input/target/output relationships with other
structures via natural selection. Thus, we emphasize that the pri-
mordial protomap provides only a blueprint with a specific bio-
logical potential that can fully differentiate into a species-specific
archetype of neural connections through reciprocal interactions
between interconnected levels (e.g., Molnar and Blakemore,
1995; O’Leary and Stanfield, 1989; Rakic, 1981; Rakic et al.,
1991, 2009; Selemon et al., 2013). The reciprocal interaction
with subcortical structures and other cortical areas is essential
but not a sufficient determinant of regional specification and
circuit formation, which are subsequently modified by coordi-
nated electrical activity (Katz and Crowley, 2002; Katz and
Shatz, 1996).
The essential role of the environment and extended postnatal
development in human brain is further emphasized by the obser-
vation that relative to all other primates, the human brain com-
prises a far smaller percentage of its eventual adult mass at birth
(Bianchi et al., 2013b; Robson and Wood, 2008). Yet, in adult-
hood, human cortical neuropil is significantly expanded in com-
parisonwith chimpanzee, especially in prefrontal cortex (Spocter
et al., 2012). Additionally, in humans, the processes of dendritic
and synapticmaturation, as well as synaptic elimination, are pro-
longed relative to other mammals and primates (Bianchi et al.,
2013b; Huttenlocher et al., 1982). In nonhuman primates, synap-
tic overproduction continues and elimination starts only after pu-
berty (Bourgeois and Rakic, 1993; Rakic et al., 1986). The
extraordinary scale of axon overproduction and elimination via
competition present in primates (LaMantia and Rakic, 1990;
Rakic and Riley, 1983a, 1983b) has not been observed in ro-
dents. Remarkably, in humans, the period of synaptic elimination
in the prefrontal association cortex lasts until the third decade of
life (Petanjek et al., 2011) a remarkable level of neoteny. Similarly,
the process of cortical myelination, which ends in puberty in
chimpanzees, continues into the third decade in humans (Miller
et al., 2012). This heterochronic development of cortical regions
in humans is supported by a wide range of other methods (e.g.,
Chugani et al., 1987; Khundrakpam et al., 2013; Shaw et al.,
2008), all of which indicate delayed development (neoteny) of
cortical regions that have been most related to human higher
cognition. Interestingly, a recent study suggests that although
synaptic eliminationmay be synchronous across cortical regions
in chimpanzee, the maturation of dendritic arborization is de-
layed in frontal cortex versus sensory and motor cortex, similar
to what is observed in humans (Bianchi et al., 2013b).
Thus, there appears to be a gradient of neoteny and hetero-
chrony in cortical circuit development that is most pronounced
in humans in tertiary association regions. However, this process
has parallels in chimpanzee, and, to a lesser extent, monkeys.
These observations are consistent with the gradual, stepwise
emergence of the delayed and heterochronic development of
cortical regions over primate evolution, such as the prefrontal
lobe, that are crucial for the development of human higher cogni-
tion. The significant conceptual (Changeux and Danchin, 1976),
as well as biomedical, implications of these observations is indi-
cated by the number of hypotheses that link inappropriate syn-
aptic pruning and the prolonged development of human prefron-
tal cortex to various neuropsychiatric disorders and intellectual
abilities (Paus et al., 2008; Selemon et al., 2013). However, un-
derstanding the role of heterochrony in the phylogenetic devel-
opment of the brain presents special problems because of the
complex interplay among multiple epigenetic factors that regu-
late gene expression during development (Changeux and Cha-
vaillon, 1995; Rakic, 1995). During the genesis of the cerebral
cortex, such cellular interactions probably play a more signifi-
cant role than in any other organ, and this, as well as the paucity
of crucial comparative developmental studies, is perhaps why
progress in this field has been slow. A first step is to identify
key differences in the adult and work backward to understand
their ontogeny. But such differences are likely to be many; evi-
dence of significant evolutionary adaptations at the molecular
level of even a primary sensory region of the visual system in hu-
mans is evident in adults (Preuss, 2000; Preuss et al., 2004), but
their genesis is unknown. Connecting such morphological phe-
notypes, as well as the basic developmental mechanisms con-
trolling production, migration, and areal allocation of neurons,
to genetic adaptations that have occurred in the anthropoid pri-
mate and human lineages is the next critical step if we are to un-
derstand human cortical evolution. It is clearly not a one-way
process, as genetic distinctions can be used to guide phenotype
discovery. These genetic factors are addressed in the following
sections.
The Genomic-Driven ApproachComparative Genomics in the Postgenome Era
Comparative genomics provides a powerful platform for identi-
fying the genes and adaptive regulatory changes involved in
cerebral cortical expansion, arealization, and other human-spe-
cific cellular or connectivity phenotypes (e.g., Table 1; Li et al.,
2013; Rilling et al., 2008). The basic assumption underlying
Neuron 80, October 30, 2013 ª2013 Elsevier Inc. 637
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Perspective
this paradigm is that changes in the genome on the human line-
age, whether individual nucleotides, insertion-deletions (indels),
or larger structural chromosomal variation, underlie the basic
developmental processes described above. By comparing the
human sequence to other mammals, one can infer that common
DNA sequences represent those of the common ancestor and
that those that differ between the two represent changes occur-
ring in either species. Critical to interpretation of these data is
comparison to another species that is a common but more
distantly related ancestor, called an outgroup, without which
understanding whether the observed differences occur on the
human lineage is not possible (reviewed in Preuss et al., 2004;
Varki and Altheide, 2005). Many forms of genetic variation that
distinguish human from other species have been identified (re-
viewed in O’Bleness et al., 2012; Scally et al., 2012; Varki
et al., 2008). The process of identifying variation is framed by
the daunting prospect of sifting through tens of millions of
base pairs that differ between humans and their closest rela-
tives to identify those that are most divergent. Once such vari-
ants are found, connecting them to specific tissues, such as
the brain, and, within the brain, to specific phenotypes, poses
additional challenges. Thus, it should not be surprising that
few clear smoking guns have been identified that distinguish
the human brain from that of other species, including anthropoid
primates.
Identifying Multiple Forms of Genetic Drivers
It is estimated that single-nucleotide differences, indels, and
structural chromosomal changes comprising about 4% of the
genome differ between humans and chimpanzees, providing a
finite space for exploring the differences between ourselves
and our closest living ancestor (Cheng et al., 2005; Prado-Marti-
nez et al., 2013; Prufer et al., 2012; Sudmant et al., 2013). Until
the last decade, identifying key functional elements was practi-
cally restricted to evolutionary comparisons focused primarily
on known coding regions, despite the fact that the importance
of regulatory variation outside of coding sequences was well
appreciated (King and Wilson, 1975). As our ability to annotate
function has increased, so has the appreciation that there is a
great deal of our functional genome outside of that accounting
for protein-coding genes, ranging from multiple classes of non-
coding RNA (Mercer et al., 2009) to known and cryptic regulatory
elements (Bernstein et al., 2012).
Evolution of the Coding Genome at the
Single-Nucleotide Level
As there are only about two dozen genes estimated to be present
in human (derived; Table 2) and not in chimpanzee, most ana-
lyses of the protein-coding genome focus on differences be-
tween proteins shared between humans and other primates. In
this case, changes that alter amino acids (missense or nonsense)
between several species are compared to background
changes—those that do not alter coding sequence, such as si-
lent polymorphisms within protein-coding regions, or variants
within introns, or those entirely outside of genic regions. The
key issue here is that in the case of modern humans, neutral
changes and genetic drift predominate due to small initial popu-
lation sizes and population bottlenecks. The usual metrics used
compare two species on a gene-wide basis, for example Ka/Ki
(number of amino acid changing variants/number of noncoding
638 Neuron 80, October 30, 2013 ª2013 Elsevier Inc.
variant background) or Ka/Ks (number of amino acid changing
variants/number of synonymous variants). As genomics have
continued to expand our notion of the functional genome, one
must ask what is reasonable to use as neutral background (Bern-
stein et al., 2012; Mercer et al., 2009; Varki et al., 2008). Further-
more, it is clear that not all protein-coding domains are equiva-
lent when it comes to conservation of their functional role.
Another issue is the timescale. Intraspecies comparisons of
sequence depend on having sufficient number of events to
have power to detect significant deviations from neutral expec-
tations. This means that comparisons between the hominid line-
ages, or even old-world primates and other mammals such as
rodents, have significantly more power to detect primate-spe-
cific changes than comparisons of human and chimpanzee
have to detect human-specific changes. However, the vastly
different population sizes and histories of these mammals, for
example, mice and men, can undermine many of the standard
assumptions made in these analyses (e.g., Oldham and Gesch-
wind, 2005). These issues highlight some of the key limitations of
purely statistical approaches when assessing natural selection
at the protein-coding level and, conversely, highlight the need
to develop experimental systems for testing such hypotheses.
Realizing these limitations, it is still of interest to know whether
protein-coding genes are under positive selection in humans or
in anthropoid primates relative to other mammals. Although
some studies have suggested that brain genes are under posi-
tive selection with respect to the rest of the genome (Dorus
et al., 2004), the weight of the accumulating evidence suggests
that this is not the case (Wang et al., 2007). Rather, protein-cod-
ing genes in the nervous system have on average fewer nonneu-
tral changes and thus are under increased purifying selection.
This is consistent with the notion that human CNS complexity
yields evolutionary constraint.
However, the increased evolutionary constraint on brain-ex-
pressed genes overall does not preclude adaptive evolution of
individual genes; rather, it puts them into stronger relief.
Genome-wide comparisons reveal that approximately 500–
1,000 genes are likely under strong positive selection in humans
based on changes in their coding sequence (Clark et al., 2003;
Chimpanzee Sequencing and Analysis Consortium, 2005; Scally
et al., 2012). Although brain genes are not overall under positive
selection, there is an enrichment for brain-related functions
among those that are (Kamada et al., 2011; Liu et al., 2012a).
One particularly salient example is the transcription factor
FoxP2, which was originally identified for its role in a rare speech
and language disorder, and more recently with developmental
dyspraxia in humans (Noonan et al., 2006). Remarkably,
sequencing of the Neanderthal and Denisovan genomes re-
vealed that they share the human-derived form of FoxP2 (Meyer
et al., 2012; Noonan et al., 2006). One of the human-derived
changes was present in carnivores, reducing the statistical evi-
dence for the adaptive evolution of FoxP2. Here, the power of
modern molecular genetics and neuroscience was brought to
bear in two studies, one in vitro and one in vivo, which tested
the functional impact of the two amino acid changes. In the first,
mouse FoxP2 was humanized (hFoxP2) and compared with the
endogenousmouse form, revealing functional changes in striatal
circuitry coupled with cellular alterations, including increased
Table 2. Classes ofGenetic Features that Differentiate Humans fromOther Species, SomeofwhichMayContribute toHuman-Specific
Features
Class Number Reference
Accelerated genes in humans with respect
to chimpanzees and gorillas
663 genes Column1; Scalley et al. 2012
Brain-expressed genes in humans with
dN/dS > 1 comparing human to chimp, gorilla,
macaque, marmoset, and mouse lemur
342 genesa http://ensembl.org, http://brainspan.org
Human-specific deletions in otherwise highly
conserved regions (hCONDELs)
510 deletions McLean et al., 2011
Regions of differential H3K4 trimethylation
compared to chimps and macaques
410 peaks Shulha et al., 2012
Human-specific gene duplications compared
to gorilla, chimpanzee, and orangutan
23 gene families, of which 8 are
fixed in humansbSudmant et al., 2010; Dennis et al., 2012
Copy number increases 15c O’Bleness et al., 2012
Purely de novo human genes 3d Knowles and McLysaght, 2009
Purely de novo human genes 1 Li et al., 2010
Human-accelerated regions 202 regionse Pollard et al., 2006
Human-specific intergenic highly
transcribed regions
24f Xu et al., 2010
Human-specific miRNAs 2–22g Berezikov et al., 2006
Human-specific miRNAs 10 Hu et al., 2012
miRNAs with human-specific cortical
expression patterns
5 Hu et al., 2011
Telencephalic enhancers 307 peaks in human genome
nonalignable to mousehVisel et al., 2013
Human-specific genes upregulated in PFC
compared to cerebellum, thalamus,
striatum, and hippocampus
54i Zhang et al., 2011
aSome of these will be neutrally evolving on the human lineage.bUniformly diploid in other great apes.cMany listed as having ‘‘likely’’ phenotypic consequences.dUniprot currently lists the existence of one of these proteins as ‘‘unknown’’ and the other two as only having evidence at the transcript level.eThe acceleration in a minority of these regions is consistent with biased gene conversion.fObserved in both pools of humans but not in the chimp pool ormacaque pool. This will include lincRNAs and poorly annotatedUTRs andwas based on
pooling a handful of representatives from each species, which may complicate inference of species specificity.gMany of these were only observed once in human, suggesting that depth may pose a challenge to infer species specificity.hAs this is with respect to mouse, these peaks will reflect 80–100 million years of divergence along each lineage.iSpecies specificity was based on automated alignments, which may overcall lineage-specific genes.
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dendritic length in the mouse with hFoxP2, consistent with pre-
vious analyses of FoxP2 targets (Spiteri et al., 2007; Vernes
et al., 2011). In the second study (Konopka et al., 2009), overex-
pression of the human and chimpanzee FoxP2 in human cells
was performed to compare its transcriptional targets, revealing
striking differences between the two species’ FoxP2 forms,
many of which reflected in vivo gene expression differences
observed between human and chimpanzee brain. In addition
to genes important for neurodevelopment and synaptic function,
human differential FoxP2 targets also included genes involved in
branchial arch formation and craniofacial development, which
suggests potential coevolution of both the CNS and articulatory
structures necessary for spoken language (Konopka et al.,
2009). Additional layers of complexity exist; recent studies
comparing the hFoxp2 to the mouse version suggest that
FoxP2 function may extend beyond circuit formation and plas-
ticity to directing neural progenitor proliferation (Tsui et al.,
2013), thus providing another window for directing cortical evo-
lution. Thework inmouse, as well as other research in songbirds,
by showing that FoxP2 directs fundamental aspects of sensori-
motor integration rather than being a language gene per se (e.g.,
auditory-guided vocal and other forms of motor learning), also
demonstrates how cross-species comparative studies can
inform our mechanistic understanding of language through iden-
tifying shared and derived elements (Fisher and Ridley, 2013;
Konopka et al., 2012).
Gene Duplication and Deletion
From a purely quantitative perspective, gene duplications and
deletions comprise more of the genetic landscape relevant to
interspecies comparisons than do single base pair changes
(Conrad and Antonarakis, 2007). Genome duplication played a
major role in the development of the vertebrate lineage, yet con-
necting these changes to function has proven difficult (Van de
Peer et al., 2009). Work from Eichler and colleagues also shows
Neuron 80, October 30, 2013 ª2013 Elsevier Inc. 639
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Perspective
that the rate of accumulation of duplications has increased in
African Great Apes relative to all other primates and that because
of the repetitive elements surrounding these regions, many are
the source of disease-related copy number variation in humans
(Conrad and Antonarakis, 2007; Marques-Bonet et al., 2009).
In humans, there are several hundred identified regions of inter-
spersed segmental duplications. Since duplicated genes are
likely to be under less initial constraint than the ancestral form,
they also provide a fertile platform for adaptive evolution. Less
clear is the role of genic deletions (Prado-Martinez et al., 2013).
One clearly important example of duplication is the Duff1220
protein domain, whose role in cerebral development and func-
tion remains under investigation (Dumas et al., 2012; Popesco
et al., 2006).
It was experimentally demonstrated recently that gene dupli-
cation influences vertebrate cognitive evolution via investigation
of the role of paralogues of the DLG family of synaptic signaling
molecules and two NMDA receptor subunits derived from
genome duplications in the vertebrate radiation (Nithiananthara-
jah et al., 2013; Ryan et al., 2013). These are challenging studies
to perform from many perspectives (Belgard and Geschwind,
2013); one particularly innovative aspect of the work by Nithia-
nantharajah et al. (2013) is the cross-species investigation of
cognitive phenotypes in mouse and human using the CANTAB,
which reveals parallel deficits in attention, memory, and visuo-
spatial discrimination in knockout mice and human subjects
with DLG2 mutations, three of whom suffer from schizophrenia.
Ryan et al. (2013) perform domain swapping in particularly diver-
gent regions of the NMDA receptor subunits GluN2a and GluN2b
that enables them to relate different subunit components to
distinct aspects of learning including executive function, which
is related to the expansion of the frontal lobes in primates.
Rather than focusing on conserved features of the mammalian
synapse, Charrier et al. (2012) and Dennis et al. (2012) exten-
sively characterize a complex set of remarkable gene duplication
events occurring over the course of the last three and a half
million years that yielded a truncated form of the protein
SRGAP2A protein, SRGAP2C in humans. They find that
SRGAP2C is also expressed in H. neanderthalensis and Deniso-
vans (Dennis et al., 2012) but not in any of the great apes, sug-
gesting that it arose approximately onemillion years ago, consis-
tent with a new role in human brain function. Through elegant
in vitro and in vivo experiments in mouse (Charrier et al., 2012),
they show that SRGAP2 leads to a higher density of dendritic
spines, as well as longer dendritic shafts, which are known to
be more human-like phenotypes when compared with other
mammals (Benavides-Piccione et al., 2002). Thus, SRGAP2C
may at least partially underlie the neoteny in synaptic refinement
observed in humans described in the section on phenotypes.
The next step will be connecting these phenotypes to circuits
and behavior: for example, how do more human-like spines
affect mouse behavior and cognition?
Nonprotein-Coding Elements: Regulatory Regions
and Noncoding RNA
The protein-coding genome accounts for about 2% of the
human genome, but it is estimated that at least another 10%–
15% is also functional, including presumed and cryptic regulato-
ry elements and thousands of transcribed noncoding RNAs
640 Neuron 80, October 30, 2013 ª2013 Elsevier Inc.
(Ponting and Hardison, 2011). This nonprotein-coding regulatory
portion was emphasized by the now classic study by King and
Wilson (1975). Yet assigning function to these regions has only
recently become practical (Pollard et al., 2006; Prabhakar
et al., 2006).
Identifying Regulatory Elements
As a complement to genome sequence, the ENCODE project
has the laudable goal of providing an ‘‘encyclopedia’’ of func-
tionally annotated DNA and a foundational regulatory map of
the human genome across tissue and cell types (Gerstein
et al., 2012). A key issue is that since chromatin structure, DNA
methylation, and subsequently promoter binding vary across
cell types and tissues, we need to have this information in spe-
cific neural cell types and in human cerebral cortex across devel-
opment, which has not yet been completed (hence the call for a
‘‘psychENCODE’’; http://grants.nih.gov/grants/guide/rfa-files/
RFA-MH-14-020.html). Still, focused genome-wide studies
have yielded important advances, including the study of highly
conserved, yet rapidly evolving regions of the genome (in pri-
mates and humans) that have revealed more than a hundred
new putative enhancers. Elegant in vivo reporter assays show
that most have tissue-specific early developmental functions,
most frequently in the CNS (Visel et al., 2008). In fact, other forms
of presumed human-specific gene regulation are also enriched
near genes involved in CNS function and development (McLean
et al., 2011). Currently, over 500 human accelerated regions (but
otherwise highly conserved) (HARs) and a similar number of pri-
mate accelerated regions (PARs) have been identified based on
comprehensive analysis of human-constrained genome
sequence in 29 mammals (Jones et al., 2012). However, a
remarkable 40% of human-constrained sequence (nearly 2%
of the genome!) identified in this conservative manner remains
essentially uncharacterized, indicating room for a remarkable
amount of future discovery. Similarly, there are over 500 regions
that are highly conserved in mammals through chimpanzees but
deleted in humans (suggestive of function) that may regulate
more than 1,000 genes (McLean et al., 2011). To complicatemat-
ters further, mobile repeats such as Alu elements (Cordaux and
Batzer, 2009) have rapidly evolved in African great apes, with
the greatest number occurring in humans. Such transposable el-
ements have been shown to regulate gene expression and thus
represent another layer of regulatory complexity introduced in
primates and accelerated in humans. Furthermore, to under-
stand the role of these genomic events in human brain evolution,
their function must be interrogated in a tissue- and stage-spe-
cific manner in cerebral cortex.
In a recent tour de force, Rubenstein and colleagues com-
bined computational analysis of sequence conservation with
DNA binding assays in mouse and humans (chromatin IP, etc.)
and in vivo validation in developing mouse to provide a catalog
of human telencephalic enhancers (Visel et al., 2013). This in-
cludes several that may be associated with human neuropsychi-
atric diseases and a significant proportion that are presumed
human or primate specific (Visel et al., 2013). Future studies
querying laminar and cell-type-specific regulation in high resolu-
tion at multiple stages will be necessary to complete a map of
human cortical regulatory elements as a crucial foundational
resource. Like the functional work on gene duplications, this
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Perspective
work again demonstrates how combination of cross-species
bioinformatics and mouse experimentation can provide mecha-
nistic insight into brain evolution.
Noncoding RNA
Noncoding RNAs provide another layer of regulatory complexity
that needs to be considered in understanding human brain evo-
lution. Some have proposed that noncoding RNA and RNA edit-
ing mechanisms may serve as a major driver of brain evolution
(Barry and Mattick, 2012). Unfortunately, little is known about
the roles of various forms of noncoding transcripts, frommiRNAs
through lincRNAs in human brain (Ulitsky and Bartel, 2013).
Complicating their identification and study is the very rapid
sequence divergence in many noncoding regions, whether
purely regulatory or coding for transcripts, such as lincRNAs.
One notable example of a noncoding RNA that is involved in
human brain evolution is HAR-1, a long noncoding RNA originally
identified as the most accelerated noncoding transcribed
genomic region in humans (Pollard et al., 2006). HAR-1 shows
strikingly restricted expression in Cajal-Retzius neurons in the
marginal zone during the time of neuronal migration in the cere-
bral cortex, consistent with a fundamental role in human cerebral
cortical development and evolution. Precisely what this role is re-
mains to be determined, perhaps by adapting the experimental
approaches pioneered in the study of duplicated genes.
In contrast with protein-coding genes, miRNAs are extremely
divergent between humans and other mammals. There are
nearly twice the number of miRNAs in humans as in mice (and
six times the number in Drosophila [Berezikov, 2011]). The orga-
nization and diversity of human miRNAs is consistent with the
model that gene duplication and transposon insertion lead to
reduced constraint early in the emergence of paralogues and
is a major driver of mammalian evolution. Although potentially
confounded by the different stages compared, sequencing of
human fetal and adult chimpanzee brain miRNAs identified
about 20 human-specific, and over 100 primate-specific,
miRNAs when compared with other vertebrates (Berezikov,
2011). These provide a fertile ground for understanding complex
gene regulation in human cerebral development, for example,
how these miRNAs relate to the expansion of specific neural
progenitor pools predicated by the protomap hypothesis, as
well as unique cellular and synaptic features of human cortical
architecture.
Transcriptomics
Oneweakness of isolated interspecies sequence comparisons is
that most genes expressed in the cerebral cortex are also ex-
pressed in other tissues, so it is not possible to unequivocally
assign organ-specific function to human-specific DNA changes
without further experimental evidence (Prabhakar et al., 2008; Vi-
sel et al., 2013). A complement to sequence analysis is the anal-
ysis of gene expression, which can help in understanding the
particular role of genetic variation at the level of the specific tis-
sue. Analysis of gene expression at the RNA or protein level also
provides a phenotype in between the structural or cognitive phe-
notypes in question and DNA variation (Geschwind and Ko-
nopka, 2009). Several studies have now shown that there are
significant differences between the species, identifying hun-
dreds of genes changing on the human lineage (Khaitovich
et al., 2006; Preuss et al., 2004). However, there are many ca-
veats in interpreting these differences, including the role of the
environment and the challenge in distinguishing which changes
in expression are adaptive changes, rather than the expected
neutral changes due to genetic drift (Khaitovich neutral model).
These confounders have been reviewed in detail (Khaitovich
et al., 2006; Preuss et al., 2004).
Increased Molecular Complexity in Human Frontal Lobe
and Neoteny
By organizing genes into coexpression modules, network anal-
ysis provides a functional context from which to assess the sig-
nificance of expression changes and can further help to prioritize
individual genes from long lists of differential expressed genes
(Konopka et al., 2012; Oldham et al., 2006; Oldham et al.,
2008). This approach has highlighted accelerated changes in
the cerebral cortex, most specifically the frontal lobe on the hu-
man lineage (Konopka et al., 2012). Konopka et al. (2012) found
that even with frontal lobe, there was significantly more tran-
scriptional network complexity in humans compared with chim-
panzee and macaque, consistent with an increase in cellular and
molecular complexity within a single brain region in humans.
Remarkably, these human-specific networks are comprised of
genes involved in neuronal morphology and synaptic function,
as well as genes related to FoxP2 (Konopka et al., 2012). The
next step is to understand to what extent these networks reflect
differences in cell types themselves or molecular signaling within
cells in the human frontal lobe (Konopka et al., 2012; Ponting and
Oliver, 2012). Furthermore, understanding how the specific
genes identified here relate to specific human-derived pheno-
types related to local circuit organization in the prefrontal cortex,
such as elaborated dendritic branching, or increased inhibitory
neuron density, can now be experimentally approached.
Marked acceleration of human-specific changes in the frontal
lobe has also been observed specifically in the class of genes
with developmental trajectories that differed between the spe-
cies (Somel et al., 2011). Support for this contention is the obser-
vation that humans and other primates differ in terms of the delay
in the upregulation of gene expression related to synaptic func-
tion in human frontal cortex (Liu et al., 2012a). Coupled with
in vitro experimental validation, Somel and colleagues’ work rep-
resents one of the first studies to begin to use transcriptional
phenotypes to identify potential causal drivers of adaptive evolu-
tion and connect these to specific brain regions and functional
processes (Somel et al., 2011). These data and the effect of
the human-specific SRGAP2c on dendritic development (Char-
rier and Polleux, 2012) may provide the first known molecular
signatures of neoteny that characterizes human cognitive and
behavioral development.
Other recent work, showing that one of themost human accel-
erated classes of genes involves those that are expressed during
brain development, provides additional evidence that character-
izing human or primate-derived developmental mechanisms will
be critical to understanding human evolution (Zhang et al., 2011).
Understanding whether these ‘‘new’’ genes are involved in hu-
man and or primate-specific neural progenitor cell-cycle regula-
tion enriched in the OSVZ (Lui et al., 2011; Molnar et al., 2006) or
alternatively overlap with those involved in frontal cortex den-
dritic/synaptic development or maturation presents a clear
means for connecting evolutionary genomic findings with human
Neuron 80, October 30, 2013 ª2013 Elsevier Inc. 641
Neuron
Perspective
cerebral cortical phenotypes underlying the evolution of human
cognition.
Finally, the origin of transcriptional changes in the cerebral
cortex on the human lineage is not known inmost cases (Oldham
et al., 2006), but they may be related to the evolution of the hu-
man-specific regulatory or noncoding elements discussed
above. Integration of many of the data sets cited here, coupled
to experimental manipulations, now permits making such causal
connections. Additionally, environmental or genetic factors may
alsomediate changes in gene expression via DNAmethylation. A
recent tour de force analysis of human and mouse frontal cortex
methylation throughout postnatal development reveals dynamic,
age-dependent changes (Lister et al., 2013), consistent with
marked epigenetic remodeling during neural development and
maturation. These investigators also identify multiple regions of
differential methylation between mouse and human cortex,
which not surprisingly are significantly associated with regu-
latory regions (Lister et al., 2013). In additional to providing a
genomic methylation roadmap in a tissue that is key for human
evolution for the first time, this work indicates that careful match-
ing for developmental stage is necessary for comparative anal-
ysis across species.
Although epigenetic comparisons of primate and human brain
are in their early stages, some interesting findings have emerged
(Shulha et al., 2012; Zeng et al., 2012b). Integration of cross-spe-
cies methylation and expression data have revealed significant
correlations between the two in humans and primates, suggest-
ing that differential methylation may drive the evolution of spe-
cific gene expression patterns in humans (Zeng et al., 2012b).
Comparative analysis of major histone marks related to open
chromatin (transcriptionally active regions) in sorted neuronal
nuclei revealed adaptive evolution in humans relative to chim-
panzee at several loci, including DPP10 (Shulha et al., 2012).
Chromosome confirmation-capture and analysis of DPP10
expression supports a human-specific regulatory network at
this neuropsychiatric disease-relevant locus (Shulha et al.,
2012). The next steps that will afford us a more holistic under-
standing of genome and regulatory evolution, by connecting
changes in genome sequence, chromatin structure, and tran-
scriptional regulation, are now within reach.
Human Cortical Lamination
No genome-wide comparison of human and primate cortical
laminae has yet been conducted. However, laminar compari-
sons of the expression of about 1,000 curated genes between
human and mouse by in situ hybridization reveal that, overall,
there is widespread conservation of patterns, with a 20% overall
divergence in expression patterns in primary visual cortex, and
an approximately 25% divergence in temporal lobe (Zeng
et al., 2012a). Remarkably, the most divergent class of genes
is cortical neuronal markers, including laminar markers (59%
divergence) and putative interneuron markers (41%). The au-
thors emphasize that almost half of the genes that were layer V
markers in mouse either were not expressed differentially or
were layer III markers in human, consistent with the expansive
long-range intercortical connections in primate relative to
rodent. These investigators also explored the patterns of a sub-
set of genes evolving on the human lineage, observing wide-
spread cortical expression for most of these, consistent with a
642 Neuron 80, October 30, 2013 ª2013 Elsevier Inc.
trans-neuronal, rather than a subclass-specific, role. Now,
work in this area must move to the level of specific cell types,
including glia, as unbiased, genome-wide comparisons of
mouse and human gene expression networks suggest more
divergence in glia than in most neurons (Miller et al., 2010).
ConclusionsThe evolution of the human brain is a vast subject. We argue
that although we are at a stage where large-scale genomic
data collection is clearly useful and already has provided a
key foundation, it is not sufficient. A theoretical framework
founded on understanding the key processes of neurodevelop-
ment and cortical neural function that distinguish primates and
humans from other mammals is essential. The radial unit and
protomap hypotheses provide structures on which to explore
specific early developmental events’ role in human cerebral
cortical evolution. However, understanding differences in both
the pace and final state and diversity of cortical neuronal phe-
notypes in humans will require further comparative cellular,
behavioral, and anatomical studies to provide a true catalog
of human differences. Comparisons with our closest living an-
cestors, the chimpanzee, will be critical to define human spec-
ificity, but broader phylogenetic comparisons including widely
used experimental models such as invertebrates, mice, and
other primates are also fundamental. But even that may not
guarantee success. One example of a well-described anatom-
ical human adaptation that has been particularly vexing to con-
nect to developmental or molecular mechanisms is the genesis
of human cerebral asymmetry, which is fundamental to the
emergence of human language. Its anatomical basis has
been appreciated for nearly a half century, yet, despite more
than a decade of significant progress in defining the molecular
pathways involved in visceral asymmetry, relatively little is un-
derstood about how this might connect to cerebral cortex
asymmetry.
It is also clear that gene regulation has played a key role in hu-
man cerebral evolution. Integration of the multiple types of func-
tional genes, from those coding proteins to multiple forms of
noncoding RNAs, as well as mechanisms of gene regulation,
will require innovative systems biology methods. Nevertheless,
we are now at a place where we can connect differentially ex-
pressed genes to biological processes and understand the reg-
ulatory elements that may drive these processes, moving from
an era of genomic andmolecular description to functional testing
in model systems. Many challenges remain, including the trade-
offs between matching the intricacies of in vivo development
often only approachable in nonprimates, such as mouse, and
the vast species differences that warrant adopting in vitro human
models. Technological advances, including three-dimensional
organoid cultures (Lancaster et al., 2013) or mouse and
mouse-human chimeras (Goldman et al., 2012), will soon
improve this situation. The confluence of advances in compara-
tive genomics and modern neurobiology has made what in the
past may have seemed like an experimentally intractable prob-
lem readily addressable. It is imperative that we continue to
take on this challenge, as understanding human brain evolution
is likely to be important for understanding many human neuro-
psychiatric diseases.
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Perspective
ACKNOWLEDGMENTS
P.R. is supported by the NIH grants R01 DA023999 and R01 NS014841 andthe Kavli Institute for Neuroscience at Yale. P.R. also thanks members of hislab for helpful discussions. D.H.G. is supported by NIH/NIMH grants R01MH100027 (ACE Network Award), R37 MH060233 (MERiT Award), P50HD055784 (ACE Center Award), and R01 MH094714, and Simons SFARIAward 206744. D.H.G. thanks T. Grant Belgard, PhD, for very helpful discus-sions and construction of Table 2 and Lauren Kawaguchi for editorial assis-tance.
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